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Reducing unwanted consequences of aggregation in large-scale economic models - A systematic empirical evaluation with the GTAP model

机译:减少大规模经济模型中聚集的不良后果-使用GTAP模型进行系统的经验评估

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We discuss how to avoid aye regation bias in large-scale global Computable General Equilibrium (CGE) models by reducing the need of pre-model aggregation, based on the combination of algorithmic improvements and a filtering approach which removes small transactions. Using large-scale sensitivity analysis, we show the impact of pre-aggregation and filtering on model size, model solution time and simulated welfare impacts, using a multi-lateral partial trade liberalization simulated with the standard GTAP model as the test case. We conclude that pre-model aggregation should be avoided as far as possible, and that our filtering approach and algorithmic improvements allow global CGE analysis even with highly disaggregated data sets at moderate solution times. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们将基于算法改进和消除小额交易的过滤方法相结合,讨论如何通过减少模型前聚合的需求来避免大规模全局可计算通用均衡(CGE)模型中的规约偏差。通过使用标准GTAP模型作为测试案例进行模拟的多边部分贸易自由化,我们使用大规模的敏感性分析,显示了预聚合和过滤对模型大小,模型求解时间和模拟的福利影响的影响。我们得出的结论是,应尽可能避免模型前聚合,并且即使在中等求解时间使用高度分解的数据集,我们的过滤方法和算法改进也可以进行全局CGE分析。 (C)2016 Elsevier B.V.保留所有权利。

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